| Literature DB >> 33343174 |
Wang Miao1, Eric Tchetgen Tchetgen1.
Abstract
We study identification of parametric and semiparametric models with missing covariate data. When covariate data are missing not at random, identification is not guaranteed even under fairly restrictive parametric assumptions, a fact that is illustrated with several examples. We propose a general approach to establish identification of parametric and semiparametric models when a covariate is missing not at random. Without auxiliary information about the missingness process, identification of parametric models is strongly dependent on model specification. However, in the presence of a fully observed shadow variable, which is correlated with the missing covariate but otherwise independent of its missingness, identification is more broadly achievable, including in fairly large semiparametric models. With a shadow variable, special consideration is given to the generalized linear models with the missingness process unrestricted. Under such a setting, the outcome model is identified for familiar generalized linear models, and we provide counterexamples when identification fails. For estimation, we describe an inverse probability weighted estimator that incorporates the shadow variable to estimate the missingness process, and we evaluate its performance via simulations.Entities:
Keywords: Identification; Missing covariate data; Missing not at random; Shadow variable
Year: 2018 PMID: 33343174 PMCID: PMC7746016 DOI: 10.5705/ss.202016.0322
Source DB: PubMed Journal: Stat Sin ISSN: 1017-0405 Impact factor: 1.261